MLG 033 Transformers

MLG 033 Transformers

Released Sunday, 9th February 2025
Good episode? Give it some love!
MLG 033 Transformers

MLG 033 Transformers

MLG 033 Transformers

MLG 033 Transformers

Sunday, 9th February 2025
Good episode? Give it some love!
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Background & Motivation

  • RNN Limitations: Sequential processing prevents full parallelization—even with attention tweaks—making them inefficient on modern hardware.
  • Breakthrough: “Attention Is All You Need” replaced recurrence with self-attention, unlocking massive parallelism and scalability.

Core Architecture

  • Layer Stack: Consists of alternating self-attention and feed-forward (MLP) layers, each wrapped in residual connections and layer normalization.
  • Positional Encodings: Since self-attention is permutation invariant, add sinusoidal or learned positional embeddings to inject sequence order.

Self-Attention Mechanism

  • Q, K, V Explained:
    • Query (Q): The representation of the token seeking contextual info.
    • Key (K): The representation of tokens being compared against.
    • Value (V): The information to be aggregated based on the attention scores.
  • Multi-Head Attention: Splits Q, K, V into multiple “heads” to capture diverse relationships and nuances across different subspaces.
  • Dot-Product & Scaling: Computes similarity between Q and K (scaled to avoid large gradients), then applies softmax to weigh V accordingly.

Masking

  • Causal Masking: In autoregressive models, prevents a token from “seeing” future tokens, ensuring proper generation.
  • Padding Masks: Ignore padded (non-informative) parts of sequences to maintain meaningful attention distributions.

Feed-Forward Networks (MLPs)

  • Transformation & Storage: Post-attention MLPs apply non-linear transformations; many argue they’re where the “facts” or learned knowledge really get stored.
  • Depth & Expressivity: Their layered nature deepens the model’s capacity to represent complex patterns.

Residual Connections & Normalization

  • Residual Links: Crucial for gradient flow in deep architectures, preventing vanishing/exploding gradients.
  • Layer Normalization: Stabilizes training by normalizing across features, enhancing convergence.

Scalability & Efficiency Considerations

  • Parallelization Advantage: Entire architecture is designed to exploit modern parallel hardware, a huge win over RNNs.
  • Complexity Trade-offs: Self-attention’s quadratic complexity with sequence length remains a challenge; spurred innovations like sparse or linearized attention.

Training Paradigms & Emergent Properties

  • Pretraining & Fine-Tuning: Massive self-supervised pretraining on diverse data, followed by task-specific fine-tuning, is the norm.
  • Emergent Behavior: With scale comes abilities like in-context learning and few-shot adaptation, aspects that are still being unpacked.

Interpretability & Knowledge Distribution

  • Distributed Representation: “Facts” aren’t stored in a single layer but are embedded throughout both attention heads and MLP layers.
  • Debate on Attention: While some see attention weights as interpretable, a growing view is that real “knowledge” is diffused across the network’s parameters.
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